Latest Research Trends in Fall Detection and Prevention Using Machine Learning: A Systematic Review
Abstract
:1. Introduction
- It provides an overview of the fall detection and prevention systems using wearables and non-wearables.
- It elaborates on the frequently used ML algorithms in fall detection and prevention.
- It provides a detailed analysis of the recent state-of-the-art studies. The analysis covers the dataset, participants, ML algorithms, acquisition sensors, and their placements.
- It evaluates performance parameters such as accuracy, sensitivity, and specificity for different combinations of ML algorithms, sensors, and placements.
- It provides a detailed discussion on the latest trends in fall detection and prevention systems along with the future directions.
2. Fall Detection and Prevention Systems
2.1. Non-Wearable Systems
2.2. Wearable Systems
2.3. System Overview
3. Machine Learning Algorithms
3.1. Support Vector Machine (SVM)
3.2. Artificial Neural Network (ANN)
3.3. Random Forest (RF)
3.4. k-Nearest Neighbors (kNN)
3.5. k-Means
3.6. Linear Discriminant Analysis (LDA)
3.7. Naive Bayes
4. Literature Review
- Identification
- Screening
- Inclusion
- The paper is published after 2010.
- The publishing venue is a Journal or Conference.
- The study is using ML for fall detection or prevention.
- The study is using a detailed methodology and results.
5. Analysis of Fall Detection and Prevention Schemes
5.1. Data Collection
Participants Age
5.2. Devices for Data Acquisition
5.3. Sensors Placement
5.4. Number of Sensors
5.5. ML Algorithms
5.6. Performance Analysis
6. Discussion
- Energy Efficiency: A wearable-based system can be used in a more realistic environment. However, these sensors are tiny with limited lifetime and processing power. Therefore, energy efficiency algorithms [107,108] are required to improve the feasibility of such a system [109]. The use of an energy harvester can be another potential solution to enhance the significance of the system. Fog or edge computing [110,111] is also an exciting solution to mitigate the impact of resource-hungry ML algorithms. The processing at the edge can eliminate the computational load at the sensors. Therefore, it is optimal for designing a fall detection application. In contrast, edge computing introduces the delays that make it unfit for fall prevention applications.
- Datasets: Most studies created a dataset for their experiments. However, the datasets were mainly small and consisted of healthy subjects. Extensive datasets improve the classification accuracy. Therefore, it is essential to generate large datasets, primarily consisting of elderly data. More real datasets should be created, as current datasets includes samples from ages under 40, which are physically different from people over 60. The data fusion of custom data with public datasets can generate more accurate results. The Generative Adversarial Network (GAN) [112] is also an interesting choice to enhance the datasets.
- Context Awareness: Context awareness is another exciting future direction. Usually, fall prevention applications rely on gait. However, the gait of an individual varies from surface to surface [113]. For example, the gait of a person would be different on the standard floor and sand. Therefore, there is a need for a context-aware system that incorporates this problem and minimizes false alarms.
- Sensor Fusion: Sensor fusion works on the principle of combining the data from multiple sensors to make a decision [114]. It helps in reducing the uncertainties in the data. Therefore, sensor fusion can be a potential future direction for fall detection and prevention systems.
- Wearable Design: Generally, users will be wearing the sensor-based solution for longer intervals [115]. Sometimes, a system consists of more than one sensor and electrodes. This makes the design of a user-friendly system an interesting future direction. During our analysis, this aspect was totally neglected, which questions the real-life applicability of the system.
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
Acronym | Extended Meaning |
ADL | Activities of Daily Life |
ANN | Artificial neural network |
CoG | Center Of gravity |
ConvLSTM | Combines convolutional and recurrent models |
DAGSVM | Directed acyclic graph support vector machine |
DT | Decision tree |
DTW | Dynamic time warping |
GRF | Ground reaction force |
GAN | Generative adversarial network |
IMU | Inertial measurement unit |
ILFS | Infinite latent feature selection |
KNN | k-nearest neighbor |
LDA | Linear discriminant analysis |
LR | Logistic regression |
LRS | Laser range scanners |
LSM | Least squares method |
LSTM | Long short-term memory |
ML | Machine learning |
MELMV | Multi-view ensemble learning with missing values |
MLP | Multi-layer perceptron |
PRISMA | Preferred Reporting Items for Systematic Reviews and Meta-Analyses |
QoL | Quality of life |
SVM | Support vector machine |
sEMG | Surface electromyography |
XGBoost | Extreme gradient boosting |
WHO | World health organization |
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Name of Sensor | Functionality |
---|---|
Accelerometer | Measures the rate of change of velocity (acceleration) of an object along its axis. |
Gyroscope | Measures rotational changes concerning orientation. Hence, it calculates the angular velocity along three axes, pitch (x-axis), roll (y-axis), and yaw (z-axis) |
Magnetometer | Measures the relative change of a magnetic field, its direction, and strength. |
Inertial Measurement Unit (IMU) | Consists of an accelerometer, gyroscope, and magnetometer. It provides 2 to 6 degrees of freedom, which refers to different object movements in 3-dimensional space. |
Surface Electromyography (sEMG) | It is used for detecting potentials using electrodes placed on the skin using electrochemical transducer [42]. |
Academic Library | Search String |
---|---|
Google Scholar | ⇒ Fall detection using machine learning ⇒ Fall prevention using machine learning ⇒ Fall classification using machine learning ⇒ Machine learning for Fall Classification ⇒ Fall Detection and Prevention Using Machine Learning ⇒ Detecting Fall in Elderly Using Machine Learning |
IEEE Xplore | ⇒ (((“All Metadata”:Fall Detection) AND “All Metadata”:(Machine Learning) //Filters Applied: 2010–2020 ⇒ (((“All Metadata”:Fall Prevention) AND “All Metadata”:Machine Learning) //Filters Applied: 2010–2020 ⇒ (((“All Metadata”:Fall Detection and Prevention) AND “All Metadata”:Machine Learning) //Filters Applied: 2010–2020 |
Science Direct | ⇒Fall Detection Using Machine Learning. Limited to research articles, conference abstracts. ⇒Fall Prevention Using Machine Learning Limited to research articles, conference abstracts. ⇒Fall Classification Using Machine Learning Limited to research articles, conference abstracts. |
ML Algo | Sensor | Sensor Placement | Accuracy | Sensitivity | Specificity | References |
---|---|---|---|---|---|---|
SVM | IMU | Waist | 98% | 100% | 100% | [46,52,53,85,86,87,88] |
Wrist | 91.13% | 99% | NA | [50,89] | ||
SmartPhone (IMU) | Waist | 97.80% | 99.50% | 95.20% | [39] | |
Thigh | 91.70% | 95.80% | 88.00% | [39] | ||
kNN | IMU | Wrist | 99% | 99% | NA | [89,90] |
Waist | 99.78% | 100% | 99.91% | [89] | ||
5th lumbar vertebra and sacrum | 99.40% | NA | NA | [91] | ||
ANN | IMU | Waist | 95.25% | 96.50% | 94.00% | [46,92] |
SmartPhone (IMU) | Wrist | 92.96% | 99.45% | 100% | [93] | |
IMU | L5 vertebra | 96.3% | NA | NA | [94] | |
RF | IMU | Hip | 73.70% | 84% | NA | [95] |
Lower legs, posterior pelvis | 77.30% | 66.10% | 84.70% | [96] | ||
SmartPhone (IMU) | Hand | NA | 99% | 98% | [51] |
Learning Outcomes Using ML Algorithms | |
---|---|
ML Algorithm | Learning Outcomes |
SVM | - The pattern of a falling and standing person can have a wide margin around the hyperplane. It can easily distinguish fallers from non-fallers. - SVM does not suffer from overfitting and handles high-dimensional data effectively; that is the case of fall detection. - It is memory-efficient in nature that is optimal for wearables. |
kNN | - It is faster and learns from the datasets at time of making real time predictions. Therefore, small change in input data have not much effect on the classification results. - As classifier adopts to new data points, it can be used for classifying fall detection and prevention in real time. - The systems may be computationally expensive because a lot of memory is required to store the training data. |
ANN | - Neural networks have the ability to learn by themselves and not depend only on the input data. After learning from the initial inputs and their relationships, ANNs can infer results from unseen data, making the model generalized. Therefore, when we provide unseen input data, the network learns the fall and non-fall activities and predicts better results. - As neural networks learn from examples, it can be helpful in determining falls in real-time conditions when input data may differ from training data. |
RF | - The benefit of RF is that it is fast and effective with larger data. Therefore, it is a good choice to observe the fall activities or irregular gait for fall prevention. - The results of RF change considerably with minor changes in data due to large tree structures. The human gait is very dynamic and tends to change abruptly. Therefore, it often results in low accuracy and precision, as shown in the studies. - It consumes high memory, which makes it less efficient for wearable devices. |
Sensor Placement | Learning Outcomes |
Waist | - As the center of gravity lies around the waist, body movements can be measured accurately. Use of an accelerometer enables easily detecting the linear movements of the body, while a gyroscope can identify the turns or movement around the axis. - Therefore, sensors placed on the waist can help in identifying gait irregularities and be useful for fall detection and prevention. - Generally, a belt or pouch is required to wear the sensor on the waist, which may not be optimal for daily usage. |
Wrist | - Provides good wear time compliance. - Wrist accelerometers can detect multiple intensities of activities that can be helpful in fall classification. - However, sometimes, the movement of the wrist may cause false alarms for fall detection. - Sedentary behavior (walking or lying down etc.) can be estimated accurately by a wrist-worn accelerometer. - Wrist-based sensors cannot predict lower body movements, so they are not suitable for fall prevention systems requiring minor gait details. |
Hip | - Hip-worn sensors are limited in collecting data for different body movements. - A hip angle is similar for different walking activities, which makes it not feasible for fall prevention. - In contrast, hip angle/sensors can be useful in detecting falls. |
Thigh | - Sensors worn on thigh can detect specific gait angles, making them useful for fall detection and prevention applications. |
Ref. | Year | ML Algorithm(s) | Sensor | Placement of Sensors | Target Area | Tool(s) |
---|---|---|---|---|---|---|
Salleh et al. [46] | 2020 | Nonlinear Auto Regression neural network (NARnet) | Invensense sensor | Waist | Fall Detection | NA |
Kumar et al. [47] | 2019 | SVM | IMU | Hip | Fall Prevention | DART |
Chelli et al. [97] | 2019 | KNN, ANN, QSVM, and EBT IMU | NA | NA | Fall Detection | NA |
Dubois et al. [54] | 2019 | Clustering | Microsoft Kinect v2 sensor (camera) | In front at 2 cm distance | Fall Prevention | NA |
Kim et al. [44] | 2019 | Multi class Pre-Impact Fall Detection Model | IMU | Left anterior iliac crest of the pelvis | Fall Detection | NA |
Wang et al. [45] | 2019 | Multi-view ensemble learning with missing values (MELMV) | NA | NA | Fall Prevention | NA |
Santos at el. [98] | 2019 | Convolutional Neural Network | Smart phone or smart watch | NA | Fall Detection | NA |
Villar et al. [99] | 2019 | SAX TS representation together with the TF-IDF | 3DACC sensor | Wrist | Fall Detection | R Studio |
Yacchirema et al. [100] | 2019 | DT, Ensemble, LR, Deepnets | IMU | NA | Fall Detection | NA |
Hua et al. [95] | 2018 | Random Forest | IMU | Hip | Fall Detection | STEADI |
Shahzad et al. [39] | 2018 | SVM | Mobile Phone | Waist, thigh | Fall Detection | MKL_SVM |
Putra et al. [101] | 2018 | EvenT-ML | Shimmer sensors | Chest, Waist | Fall Detection | NA |
de Quadros et al. [90] | 2018 | KNN, DT, SVM, LR, LDA | GY-80 IMU device | Wrist | Fall Detection | NA |
Hussain et al. [86] | 2019 | DT, LR, KNN, SVM classifier with Quadratic kernel function. | IMU | Waist | Fall Detection | MATLAB |
Hsieh et al. [87] | 2018 | SVM with RBF Kernel function | IMU | Waist | Fall Prevention | NA |
Aicha et al. [92] | 2018 | Combines convolutional and recurrent models (ConvLSTM) | IMU | Lower Back | Fall risk | NA |
Rescio et al. [102] | 2018 | LDA | sEMG | Lower limb (Gastrocnemius and Tibilias muscles) | Fall Detection | MATLAB |
Rodrigues et al. [91] | 2018 | SVM, Boosted and bagged DT, kNN, k-mean, Hidden Markov models | IMU | 5th lumbar vertebra and sacrum | Fall Detection | MATLAB |
Saleh et al. [52] | 2019 | Two SVM combined | IMU | Waist | Fall Detection | NA |
Serpen et al. [103] | 2018 | Random Forest, SVM | SHIMMER | Chest, thigh | Fall Detection, | NA |
Hu et al. [29] | 2018 | Deep learning network (LSTM) | IMU | L5 vertebra | Fall Detection | Python |
Mauldin et al. [93] | 2018 | NB, SVM, Deep Learning | Smart watch | Wrists | Fall Detection | NA |
Drover et al. [96] | 2017 | Random Forest Classifier | IMU | Lower legs (left and right lateral shanks), posterior pelvis | Fall Detection | MATLAB |
Fan et al. [104] | 2017 | Directed Acyclic Graph Support Vector Machine (DAGSVM) | NA | Video frames | Fall Detection | NA |
Shawen et al. [51] | 2017 | Random forest, SVM, Gradient boosting, wXtreme Gradient Boosting (XGBoost) | Mobile Phones (Samsung Galaxy S4) | Waist, in a pocket, hand | Fall Detection | MATLAB and Python |
Hsieh et al. [105] | 2016 | SVM, kNN | IMU | Wearable sensor | Fall Detection | NA |
Bourke, et al. [9] | 2016 | DT | IMU | L5 (fifth lumbar spine) | Fall Detection | Matlab, Weka |
Chen et al. [53] | 2015 | SVM | IMU | Waist | Fall Detection | NA |
Özdemir et al. [89] | 2014 | kNN, LSM, SVM, Bayesian Decision Making (BDM), DTW, ANN | IMU | Head, chest, waist, right wrist, right thigh, and right ankle | Fall Detection | NA |
Aziz et al. [85] | 2014 | SVM | Inertial sensor | Waist | Fall Detection | Matlab |
Albert et al. [106] | 2012 | SVM, LR, Naïve Bayes, Class reg tree, KNN | Mobile phones | Attached on belt and centred at the back | Fall Detection | MATLAB |
Caby et al. [50] | 2010 | A radial basis function network classifier, SVM, KNN, Naive bayesian | NA | Knee, ankle, wrists, elbow, shoulder (both left and right) | Fall Detection | NA |
Shan et al. [88] | 2010 | SVM | IMU | Waist | Fall Detection | MATLAB |
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Usmani, S.; Saboor, A.; Haris, M.; Khan, M.A.; Park, H. Latest Research Trends in Fall Detection and Prevention Using Machine Learning: A Systematic Review. Sensors 2021, 21, 5134. https://doi.org/10.3390/s21155134
Usmani S, Saboor A, Haris M, Khan MA, Park H. Latest Research Trends in Fall Detection and Prevention Using Machine Learning: A Systematic Review. Sensors. 2021; 21(15):5134. https://doi.org/10.3390/s21155134
Chicago/Turabian StyleUsmani, Sara, Abdul Saboor, Muhammad Haris, Muneeb A. Khan, and Heemin Park. 2021. "Latest Research Trends in Fall Detection and Prevention Using Machine Learning: A Systematic Review" Sensors 21, no. 15: 5134. https://doi.org/10.3390/s21155134
APA StyleUsmani, S., Saboor, A., Haris, M., Khan, M. A., & Park, H. (2021). Latest Research Trends in Fall Detection and Prevention Using Machine Learning: A Systematic Review. Sensors, 21(15), 5134. https://doi.org/10.3390/s21155134